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49 results on '"Ohlssen, David"'

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1. WATCH: A Workflow to Assess Treatment Effect Heterogeneity in Drug Development for Clinical Trial Sponsors

2. TorchSurv: A Lightweight Package for Deep Survival Analysis

3. Predicting subgroup treatment effects for a new study: Motivations, results and learnings from running a data challenge in a pharmaceutical corporation

4. Principled Drug-Drug Interaction Terms for Bayesian Logistic Regression Models of Drug Safety in Oncology Phase I Combination Trials

5. A framework for longitudinal latent factor modelling of treatment response in clinical trials with applications to Psoriatic Arthritis and Rheumatoid Arthritis

6. A Deep Learning Approach to Private Data Sharing of Medical Images Using Conditional GANs

7. Sequential knockoffs for continuous and categorical predictors: with application to a large Psoriatic Arthritis clinical trial pool

8. Conflict diagnostics for evidence synthesis in a multiple testing framework

9. Predicting subgroup treatment effects for a new study: Motivations, results and learnings from running a data challenge in a pharmaceutical corporation.

11. Conflict Diagnostics in Directed Acyclic Graphs, with Applications in Bayesian Evidence Synthesis

12. Methodology for good machine learning with multi‐omics data

14. Multi-omics investigation on the prognostic and predictive factors in metastatic breast cancer using data from Phase III ribociclib clinical trials: A statistical and machine learning analysis plan

17. Comparing algorithms for characterizing treatment effect heterogeneity in randomized trials.

36. Model averaging for treatment effect estimation in subgroups.

46. Guidance on the implementation and reporting of a drug safety Bayesian network meta-analysis.

47. A practical guide to Bayesian group sequential designs.

48. The current state of Bayesian methods in medical product development: survey results and recommendations from the DIA Bayesian Scientific Working Group.

49. Methodology for Good Machine Learning with Multi-Omics Data.

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